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深度低秩稀疏网络用于动态磁共振成像。

Deep low-Rank plus sparse network for dynamic MR imaging.

机构信息

Research Center for Medical AI, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China; Shenzhen College of Advanced Technology, University of Chinese Academy of Sciences, Shenzhen, China.

Research Center for Medical AI, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China.

出版信息

Med Image Anal. 2021 Oct;73:102190. doi: 10.1016/j.media.2021.102190. Epub 2021 Jul 24.

Abstract

In dynamic magnetic resonance (MR) imaging, low-rank plus sparse (L+S) decomposition, or robust principal component analysis (PCA), has achieved stunning performance. However, the selection of the parameters of L+S is empirical, and the acceleration rate is limited, which are common failings of iterative compressed sensing MR imaging (CS-MRI) reconstruction methods. Many deep learning approaches have been proposed to address these issues, but few of them use a low-rank prior. In this paper, a model-based low-rank plus sparse network, dubbed L+S-Net, is proposed for dynamic MR reconstruction. In particular, we use an alternating linearized minimization method to solve the optimization problem with low-rank and sparse regularization. Learned soft singular value thresholding is introduced to ensure the clear separation of the L component and S component. Then, the iterative steps are unrolled into a network in which the regularization parameters are learnable. We prove that the proposed L+S-Net achieves global convergence under two standard assumptions. Experiments on retrospective and prospective cardiac cine datasets show that the proposed model outperforms state-of-the-art CS and existing deep learning methods and has great potential for extremely high acceleration factors (up to 24×).

摘要

在动态磁共振成像中,低秩稀疏分解或稳健主成分分析已经取得了惊人的性能。然而,L+S 的参数选择是经验性的,加速率有限,这是迭代压缩感知磁共振成像 (CS-MRI) 重建方法的常见缺陷。许多深度学习方法已经被提出来解决这些问题,但很少有方法使用低秩先验。本文提出了一种基于模型的低秩稀疏网络(称为 L+S-Net),用于动态磁共振重建。特别地,我们使用交替线性化最小化方法来解决具有低秩和稀疏正则化的优化问题。引入了学习的软奇异值阈值处理,以确保 L 分量和 S 分量的清晰分离。然后,迭代步骤展开为一个网络,其中正则化参数是可学习的。我们证明了在两个标准假设下,所提出的 L+S-Net 可以实现全局收敛。对回顾性和前瞻性心脏电影数据集的实验表明,所提出的模型优于最先进的 CS 和现有的深度学习方法,并且在极高的加速因子(高达 24×)方面具有很大的潜力。

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